Critical Review
Critical review in scientific research focuses on rigorously evaluating existing methods, models, and datasets to identify limitations and biases, ultimately improving the reliability and validity of scientific findings. Current research emphasizes evaluating the robustness of various machine learning models across diverse applications, including natural language processing, image analysis, and time series anomaly detection, often focusing on issues like fairness, explainability, and the impact of initialization and data biases. This critical analysis is crucial for advancing the field by highlighting methodological flaws, promoting the development of more robust techniques, and ensuring the responsible application of these technologies in various domains. The ultimate goal is to enhance the trustworthiness and impact of scientific research and its practical applications.
Papers
Local Law 144: A Critical Analysis of Regression Metrics
Giulio Filippi, Sara Zannone, Airlie Hilliard, Adriano Koshiyama
Classification of Methods to Reduce Clinical Alarm Signals for Remote Patient Monitoring: A Critical Review
Teena Arora, Venki Balasubramanian, Andrew Stranieri, Shenhan Mai, Rajkumar Buyya, Sardar Islam
A Critical Appraisal of Data Augmentation Methods for Imaging-Based Medical Diagnosis Applications
Tara M. Pattilachan, Ugur Demir, Elif Keles, Debesh Jha, Derk Klatte, Megan Engels, Sanne Hoogenboom, Candice Bolan, Michael Wallace, Ulas Bagci
Explainability of Text Processing and Retrieval Methods: A Critical Survey
Sourav Saha, Debapriyo Majumdar, Mandar Mitra